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Robust dynamics of Amazon dieback to climate change with perturbed ecosystem model parameters

机译:受到生态系统模型参数干扰的亚马逊消退气候变化的强大动力

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摘要

Climate change science is increasingly concerned with methods for managing and integrating sources of uncertainty from emission storylines, climate model projections, and ecosystem model parameterizations. In tropical ecosystems, regional climate projections and modeled ecosystem responses vary greatly, leading to a significant source of uncertainty in global biogeochemical accounting and possible future climate feedbacks. Here, we combine an ensemble of IPCC-AR4 climate change projections for the Amazon Basin (eight general circulation models) with alternative ecosystem parameter sets for the dynamic global vegetation model, LPJmL. We evaluate LPJmL simulations of carbon stocks and fluxes against flux tower and aboveground biomass datasets for individual sites and the entire basin. Variability in LPJmL model sensitivity to future climate change is primarily related to light and water limitations through biochemical and water-balance-related parameters. Temperature-dependent parameters related to plant respiration and photosynthesis appear to be less important than vegetation dynamics (and their parameters) for determining the magnitude of ecosystem response to climate change. Variance partitioning approaches reveal that relationships between uncertainty from ecosystem dynamics and climate projections are dependent on geographic location and the targeted ecosystem process. Parameter uncertainty from the LPJmL model does not affect the trajectory of ecosystem response for a given climate change scenario and the primary source of uncertainty for Amazon 'dieback' results from the uncertainty among climate projections. Our approach for describing uncertainty is applicable for informing and prioritizing policy options related to mitigation and adaptation where long-term investments are required.
机译:气候变化科学越来越关注管理和整合来自排放故事情节,气候模型预测和生态系统模型参数化的不确定性来源的方法。在热带生态系统中,区域气候预测和模拟的生态系统响应差异很大,导致全球生物地球化学核算和未来可能的气候反馈存在很大的不确定性。在这里,我们将针对亚马逊流域的IPCC-AR4气候变化预测(八个普通环流模型)与用于动态全球植被模型LPJmL的替代生态系统参数集结合在一起。我们针对单个站点和整个盆地的通量塔和地上生物量数据集评估了碳储量和通量的LPJmL模拟。 LPJmL模型对未来气候变化敏感性的可变性主要与通过生化和水平衡相关参数的光和水限制有关。在确定生态系统对气候变化的响应幅度方面,与植物呼吸和光合作用相关的温度相关参数似乎不如植被动态(及其参数)重要。方差划分方法表明,生态系统动态不确定性与气候预测之间的关系取决于地理位置和目标生态系统过程。对于给定的气候变化情景,LPJmL模型的参数不确定性不会影响生态系统响应的轨迹,而亚马逊“平息”不确定性的主要来源是气候预测之间的不确定性。我们描述不确定性的方法适用于在需要长期投资的情况下,为与缓解和适应有关的政策选择提供信息并确定优先次序。

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